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《Matter and Radiation at Extremes》 2026年第2期I0001-I0001,共1页
Matter and Radiation at Extremes(MRE),is committed to the publication of original and impactful research and review papers that address extreme states of matter and radiation,and the associated science and technology ... Matter and Radiation at Extremes(MRE),is committed to the publication of original and impactful research and review papers that address extreme states of matter and radiation,and the associated science and technology that are employed to produce and diagnose these conditions in the laboratory.Drivers,targets and diagnostics are included along with related numerical simulation and computational methods.It aims to provide a peer-reviewed platform for the international physics community and promote worldwide dissemination of the latest and impactful research in related fields. 展开更多
关键词 produce diagnose conditions radiation science technology extreme states matter drivers computational methodsit promote worldwide dis numerical simulation
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Critical metal recovery from spent lithium-ion batteries’leaching solution using electrodialysis technologies:strategies and challenges
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作者 Tianshu Zhang Yijun Qian +2 位作者 Changyong Zhang Tao Qian Chenglin Yan 《Inorganic Chemistry Frontiers》 2024年第22期7775-7792,共18页
Accompanied by the ever-increasing demand for lithium-ion batteries(LIBs)worldwide,the recovery of spent LIBs,for both environmental concerns and social needs,is considered an efficient way to tackle the coming retire... Accompanied by the ever-increasing demand for lithium-ion batteries(LIBs)worldwide,the recovery of spent LIBs,for both environmental concerns and social needs,is considered an efficient way to tackle the coming retirement tide of LIBs.Although hydrometallurgy is highly recognized for realizing the highvalue recycling of critical metal elements from leaching solutions via chemical purification methods,its associated complex operations,large chemical consumption. 展开更多
关键词 hydrometallurgy critical metal recovery chemical purification methodsits leaching solutions electrodialysis technologies spent lithium ion batteries recovery spent libsfor critical metal elements
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Fast and Fourier features for transfer learning of interatomic potentials
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作者 Pietro Novelli Giacomo Meanti +4 位作者 Pedro J.Buigues Lorenzo Rosasco Michele Parrinello Massimiliano Pontil Luigi Bonati 《npj Computational Materials》 2025年第1期3189-3201,共13页
Training machine learning interatomic potentials that are both computationally and data-efficient is a key challenge for enabling their routine use in atomistic simulations.To this effect,we introduce franken,a scalab... Training machine learning interatomic potentials that are both computationally and data-efficient is a key challenge for enabling their routine use in atomistic simulations.To this effect,we introduce franken,a scalable and lightweight transfer learning framework that extracts atomic descriptors from pre-trained graph neural networks and transfers them to new systems using random Fourier features—an efficient and scalable approximation of kernel methods.It also provides a closed-form finetuning strategy for general-purpose potentials such as MACE-MP0,enabling fast and accurate adaptation to new systems or levels of quantum mechanical theory with minimal hyperparameter tuning.On a benchmark dataset of 27 transition metals,franken outperforms optimized kernelbased methods in both training time and accuracy,reducing model training from tens of hours to minutes on a single GPU.We further demonstrate the framework’s strong data-efficiency by training stable and accurate potentials for bulk water and the Pt(111)/water interface using just tens of training structures.Our open-source implementation(https://franken.readthedocs.io)offers a fast and practical solution for training potentials and deploying them for molecular dynamics simulations across diverse systems. 展开更多
关键词 transfer learning kernel methodsit interatomic potentials transfers them atomic descriptors atomistic simulationsto graph neural networks transfer learning framework
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